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Plotly: How to set up a color palette for a figure created with multiple traces?

I using code below to generate chart with multiple traces. However the only way that i know to apply different colours for each trace is using a randon function that ger a numerico RGB for color.

But random color are not good to presentations.

How can i use a pallet colour for code below and dont get more random colors?

groups53 = dfagingmedioporarea.groupby(by='Area')


data53 = []
colors53=get_colors(50)

for group53, dataframe53 in groups53:
    dataframe53 = dataframe53.sort_values(by=['Aging_days'], ascending=False)
    trace53 = go.Bar(x=dataframe53.Area.tolist(), 
                        y=dataframe53.Aging_days.tolist(),
                        marker  = dict(color=colors53[len(data53)]),
                        name=group53,
                        text=dataframe53.Aging_days.tolist(),
                        textposition='auto',
                        

                        )


    data53.append(trace53)

    layout53 =  go.Layout(xaxis={'title': 'Area', 'categoryorder': 'total descending', 'showgrid': False},
                        
                        yaxis={'title': 'Dias', 'showgrid': False},
                        margin={'l': 40, 'b': 40, 't': 50, 'r': 50},
                        hovermode='closest',
                        template='plotly_white',
                     

                        title={
                                'text': "Aging Médio (Dias)",
                                'y':.9,
                                'x':0.5,
                                'xanchor': 'center',
                                'yanchor': 'top'})
                        

    

figure53 = go.Figure(data=data53, layout=layout53)

Many questions on the topic of plotly colors have already been asked and answered. See for example Plotly: How to define colors in a figure using plotly.graph_objects and plotly.express? But it seems that you would explicitly like to add traces without using a loop. Perhaps because the attributes for trace not only differ in color? And to my knowledge there is not yet a description on how to do that efficiently.


The answer:

  1. Find a number of available palettes under dir(px.colors.qualitative) , or
  2. define your very own palette like ['black', 'grey', 'red', 'blue'] , and
  3. retrieve one by one using next(palette) for each trace you decide to add to your figure.

And next(palette) may seem a bit cryptic at first, but it's easily set up using Pythons itertools like this:

import plotly.express as px
from itertools import cycle
palette = cycle(px.colors.qualitative.Plotly)
palette = cycle(px.colors.sequential.PuBu)

Now you can use next(palette) and return the next element of the color list each time you add a trace. The very best thing about this is, as the code above suggests, that the colors are returned cyclically, so you'll never reach the end of a list but start from the beginning when you've used all your colors once.

Example plot:

在此处输入图片说明

Complete code:

import plotly.graph_objects as go
import plotly.express as px
from itertools import cycle

# colors
palette = cycle(px.colors.qualitative.Bold)
#palette = cycle(['black', 'grey', 'red', 'blue'])
palette = cycle(px.colors.sequential.PuBu

# data
df = px.data.gapminder().query("continent == 'Europe' and year == 2007 and pop > 2.e6")

# plotly setup
fig = go.Figure()

# add traces
country = 'Germany'
fig.add_traces(go.Bar(x=[country],
                      y = df[df['country']==country]['pop'],
                      name = country,
                      marker_color=next(palette)))

country = 'France'
fig.add_traces(go.Bar(x=[country],
                      y = df[df['country']==country]['pop'],
                      name = country,
                      marker_color=next(palette)))

country = 'United Kingdom'
fig.add_traces(go.Bar(x=[country],
                      y = df[df['country']==country]['pop'],
                      name = country,
                      marker_color=next(palette)))

fig.show()

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